DocumentCode
13199
Title
Spectral Hashing With Semantically Consistent Graph for Image Indexing
Author
Li, Peng ; Wang, Meng ; Cheng, Jian ; Xu, Changsheng ; Lu, Hanqing
Author_Institution
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Volume
15
Issue
1
fYear
2013
fDate
Jan. 2013
Firstpage
141
Lastpage
152
Abstract
The ability of fast similarity search in a large-scale dataset is of great importance to many multimedia applications. Semantic hashing is a promising way to accelerate similarity search, which designs compact binary codes for a large number of images so that semantically similar images are mapped to close codes. Retrieving similar neighbors is then simply accomplished by retrieving images that have codes within a small Hamming distance of the code of the query. Among various hashing approaches, spectral hashing (SH) has shown promising performance by learning the binary codes with a spectral graph partitioning method. However, the Euclidean distance is usually used to construct the graph Laplacian in SH, which may not reflect the inherent distribution of the data. Therefore, in this paper, we propose a method to directly optimize the graph Laplacian. The learned graph, which can better represent similarity between samples, is then applied to SH for effective binary code learning. Meanwhile, our approach, unlike metric learning, can automatically determine the scale factor during the optimization. Extensive experiments are conducted on publicly available datasets and the comparison results demonstrate the effectiveness of our approach.
Keywords
Hamming codes; database indexing; file organisation; graph theory; image matching; image retrieval; learning (artificial intelligence); visual databases; Euclidean distance; Hamming distance; binary code learning; compact binary codes; graph Laplacian; image indexing; image retrieval; inherent data distribution; large-scale dataset; metric learning; multimedia applications; query code; scale factor; semantic hashing; semantically consistent graph; similar neighbor retrieval; similarity search; spectral graph partitioning method; spectral hashing; Binary codes; Complexity theory; Databases; Hamming distance; Laplace equations; Measurement; Semantics; Graph Laplacian; metric learning; similarity search; spectral hashing;
fLanguage
English
Journal_Title
Multimedia, IEEE Transactions on
Publisher
ieee
ISSN
1520-9210
Type
jour
DOI
10.1109/TMM.2012.2199970
Filename
6202346
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